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PromCSE: Improved Universal Sentence Embeddings with Prompt-based Contrastive Learning and Energy-based Learning

PyPI - Package Version Open In Colab huggingface License: MIT

Our code is modified based on SimCSE and P-tuning v2. Here we would like to sincerely thank them for their excellent works.

**************************** Updates ****************************

  • 2023/04/05: We released our sentence embedding python package.
  • 2023/03/03: We released a simple colab notebook for a quick start!
  • 2023/01/08: We released our model checkpoints on huggingface.
  • 2022/10/09: We released the second verson of our paper. Check it out!
  • 2022/10/06: Our paper has been accepted to EMNLP 2022.
  • 2022/03/14: We released the first verson of our paper. Check it out!

Quick Links

Overview

Model List

We have released our supervised and unsupervised models on huggingface, which acquire Top 1 results on 1 domain-shifted STS task and 4 standard STS tasks:

PWC

PWC

PWC

PWC

PWC

PWC

PWC

Model STS12 STS13 STS14 STS15 STS16 STS-B SICK-R Avg.
YuxinJiang/unsup-promcse-bert-base-uncased 73.03 85.18 76.70 84.19 79.69 80.62 70.00 78.49
YuxinJiang/sup-promcse-roberta-base 76.75 85.86 80.98 86.51 83.51 86.58 80.41 82.94
YuxinJiang/sup-promcse-roberta-large 79.14 88.64 83.73 87.33 84.57 87.84 82.07 84.76

Naming rules: unsup and sup represent "unsupervised" (trained on Wikipedia corpus) and "supervised" (trained on NLI datasets) respectively.

Usage

Open In Colab

We provide an easy-to-use python package promcse which contains the following functions:

(1) encode sentences into embedding vectors;
(2) compute cosine simiarities between sentences;
(3) given queries, retrieval top-k semantically similar sentences for each query.

To use the tool, first install the promcse package from PyPI

pip install promcse

After installing the package, you can load our model by two lines of code

from promcse import PromCSE
model = PromCSE("YuxinJiang/unsup-promcse-bert-base-uncased", "cls_before_pooler", 16)
# model = PromCSE("YuxinJiang/sup-promcse-roberta-base")
# model = PromCSE("YuxinJiang/sup-promcse-roberta-large")

Then you can use our model for encoding sentences into embeddings

embeddings = model.encode("A woman is reading.")

Compute the cosine similarities between two groups of sentences

sentences_a = ['A woman is reading.', 'A man is playing a guitar.']
sentences_b = ['He plays guitar.', 'A woman is making a photo.']
similarities = model.similarity(sentences_a, sentences_b)

Or build index for a group of sentences and search among them

sentences = ['A woman is reading.', 'A man is playing a guitar.']
model.build_index(sentences)
results = model.search("He plays guitar.")

Train PromCSE

In the following section, we describe how to train a PromCSE model by using our code.

Setups

Python Pytorch

You should install the correct version of PyTorch that supports CUDA. Then run the following script to install the remaining dependencies,

pip install -r requirements.txt

Evaluation

Open In Colab

Our evaluation code for sentence embeddings is based on a modified version of SentEval. It evaluates sentence embeddings on semantic textual similarity (STS) tasks and downstream transfer tasks. For STS tasks, our evaluation takes the "all" setting, and report Spearman's correlation. The STS tasks include seven standard STS tasks (STS12-16, STSB, SICK-R) and one domain-shifted STS task (CxC).

Before evaluation, please download the evaluation datasets by running

cd SentEval/data/downstream/
bash download_dataset.sh

To evaluate the domain shift robustness of sentence embedding, we need to download CxC, and put the data into SentEval/data/downstream/CocoCXC

Then come back to the root directory, you can evaluate the well trained models using our evaluation code. For example,

python evaluation.py \
    --model_name_or_path YuxinJiang/sup-promcse-roberta-large \
    --pooler_type cls \
    --task_set sts \
    --mode test \
    --pre_seq_len 10

which is expected to output the results in a tabular format:

------ test ------
+-------+-------+-------+-------+-------+--------------+-----------------+-------+
| STS12 | STS13 | STS14 | STS15 | STS16 | STSBenchmark | SICKRelatedness |  Avg. |
+-------+-------+-------+-------+-------+--------------+-----------------+-------+
| 79.14 | 88.64 | 83.73 | 87.33 | 84.57 |    87.84     |      82.07      | 84.76 |
+-------+-------+-------+-------+-------+--------------+-----------------+-------+

Arguments for the evaluation script are as follows,

  • --model_name_or_path: The name or path of a transformers-based pre-trained checkpoint.
  • --pooler_type: Pooling method. Now we support
    • cls (default): Use the representation of [CLS] token. A linear+activation layer is applied after the representation (it's in the standard BERT implementation). If you use supervised PromCSE, you should use this option.
    • cls_before_pooler: Use the representation of [CLS] token without the extra linear+activation. If you use unsupervised PromCSE, you should take this option.
    • avg: Average embeddings of the last layer. If you use checkpoints of SBERT/SRoBERTa (paper), you should use this option.
    • avg_top2: Average embeddings of the last two layers.
    • avg_first_last: Average embeddings of the first and last layers. If you use vanilla BERT or RoBERTa, this works the best.
  • --mode: Evaluation mode
    • test (default): The default test mode. To faithfully reproduce our results, you should use this option.
    • dev: Report the development set results. Note that in STS tasks, only STS-B and SICK-R have development sets, so we only report their numbers. It also takes a fast mode for transfer tasks, so the running time is much shorter than the test mode (though numbers are slightly lower).
    • fasttest: It is the same as test, but with a fast mode so the running time is much shorter, but the reported numbers may be lower (only for transfer tasks).
  • --task_set: What set of tasks to evaluate on (if set, it will override --tasks)
    • sts (default): Evaluate on STS tasks, including STS 12~16, STS-B and SICK-R. This is the most commonly-used set of tasks to evaluate the quality of sentence embeddings.
    • cococxc: Evaluate on domain-shifted CXC task.
    • transfer: Evaluate on transfer tasks.
    • full: Evaluate on both STS and transfer tasks.
    • na: Manually set tasks by --tasks.
  • --tasks: Specify which dataset(s) to evaluate on. Will be overridden if --task_set is not na. See the code for a full list of tasks.
  • --pre_seq_len: The length of deep continuous prompt.

Training

Data

Following SimCSE, we use the same datasets to train our unsupervised models and supervised models. You can run data/download_wiki.sh and data/download_nli.sh to download the two datasets.

Training scripts
(The same as run_unsup_example.sh)

python train.py \
    --model_name_or_path bert-base-uncased \
    --train_file data/wiki1m_for_simcse.txt \
    --output_dir result/my-unsup-promcse-bert-base-uncased \
    --num_train_epochs 1 \
    --per_device_train_batch_size 256 \
    --learning_rate 3e-2 \
    --max_seq_length 32 \
    --evaluation_strategy steps \
    --metric_for_best_model stsb_spearman \
    --load_best_model_at_end \
    --eval_steps 125 \
    --pooler_type cls \
    --mlp_only_train \
    --pre_seq_len 16 \
    --overwrite_output_dir \
    --temp 0.05 \
    --do_train \
    --do_eval \
    --fp16

We provide example training scripts for both unsupervised and supervised PromCSE. In run_unsup_example.sh, we provide a single-GPU (or CPU) example for the unsupervised version, and in run_sup_example.sh we give a multiple-GPU example for the supervised version. Both scripts call train.py for training. We explain the arguments in following:

  • --train_file: Training file path. We support "txt" files (one line for one sentence) and "csv" files (2-column: pair data with no hard negative; 3-column: pair data with one corresponding hard negative instance). You can use our provided Wikipedia or NLI data, or you can use your own data with the same format.
  • --model_name_or_path: Pre-trained checkpoints to start with. For now we support BERT-based models (bert-base-uncased, bert-large-uncased, etc.) and RoBERTa-based models (RoBERTa-base, RoBERTa-large, etc.).
  • --temp: Temperature for the contrastive loss.
  • --pooler_type: Pooling method. It's the same as the --pooler_type in the evaluation part.
  • --mlp_only_train: We have found that for unsupervised PromCSE, it works better to train the model with MLP layer but test the model without it. You should use this argument when training unsupervised PromCSE models.
  • --hard_negative_weight: If using hard negatives (i.e., there are 3 columns in the training file), this is the logarithm of the weight. For example, if the weight is 1, then this argument should be set as 0 (default value).
  • --do_mlm: Whether to use the MLM auxiliary objective. If True:
    • --mlm_weight: Weight for the MLM objective.
    • --mlm_probability: Masking rate for the MLM objective.
  • --pre_seq_len: The length of deep continuous prompt.
  • --prefix_projection: Whether apply a two-layer MLP head over the prompt embeddings.
  • --prefix_hidden_size: The hidden size of the MLP projection head if prefix_projection is used.
  • --do_eh_loss: Whether to use Energy-based Hinge loss in supervised models. If True:
    • --eh_loss_margin: Margin of Energy-based Hinge loss.
    • --eh_loss_weight: Weight of Energy-based Hinge loss.

All the other arguments are standard Huggingface's transformers training arguments. Some of the often-used arguments are: --output_dir, --learning_rate, --per_device_train_batch_size. In our example scripts, we also set to evaluate the model on the STS-B development set (need to download the dataset following the evaluation section) and save the best checkpoint.

All our experiments are conducted on Nvidia 3090 GPUs.

Hyperparameters

Unsupervised BERT-base BERT-large RoBERTa-base RoBERTa-large
Batch size 256 256 64 64
Learning rate 3e-2 3e-2 3e-2 1e-2
Prompt length 16 10 14 10
do_mlm False False True True
Epoch 1 1 1 1
Valid steps 125 125 125 125
Supervised BERT-base BERT-large RoBERTa-base RoBERTa-large
Batch size 256 256 512 512
Learning rate 1e-2 5e-3 1e-2 5e-3
Prompt length 12 12 10 10
do_mlm False False False False
Epoch 10 10 10 10
Valid steps 125 125 125 125

Citation

Please cite our paper by:

@inproceedings{jiang-etal-2022-improved,
    title = "Improved Universal Sentence Embeddings with Prompt-based Contrastive Learning and Energy-based Learning",
    author = "Jiang, Yuxin  and
      Zhang, Linhan  and
      Wang, Wei",
    booktitle = "Findings of the Association for Computational Linguistics: EMNLP 2022",
    month = dec,
    year = "2022",
    address = "Abu Dhabi, United Arab Emirates",
    publisher = "Association for Computational Linguistics",
    url = "https://aclanthology.org/2022.findings-emnlp.220",
    pages = "3021--3035",
}

@article{DBLP:journals/corr/abs-2203-06875,
  author       = {Yuxin Jiang and
                  Wei Wang},
  title        = {Deep Continuous Prompt for Contrastive Learning of Sentence Embeddings},
  journal      = {CoRR},
  volume       = {abs/2203.06875},
  year         = {2022},
  url          = {https://doi.org/10.48550/arXiv.2203.06875},
  doi          = {10.48550/ARXIV.2203.06875},
  eprinttype    = {arXiv},
  eprint       = {2203.06875},
  timestamp    = {Wed, 16 Mar 2022 16:41:29 +0100},
  biburl       = {https://dblp.org/rec/journals/corr/abs-2203-06875.bib},
  bibsource    = {dblp computer science bibliography, https://dblp.org}
}

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